Decision Science Letters (Jan 2023)

Time series prediction of novel coronavirus COVID-19 data in west Java using Gaussian processes and least median squared linear regression

  • Intan Nurma Yulita,
  • Firman Ardiansyah,
  • Aulia Siska,
  • Ino Suryana

DOI
https://doi.org/10.5267/j.dsl.2023.1.006
Journal volume & issue
Vol. 12, no. 2
pp. 291 – 296

Abstract

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In 2019, the COVID-19 epidemic swept throughout the globe. The virus was first identified in Wuhan, China. By the time several months had gone by, this virus had spread to numerous locations throughout the world. Consequently, this virus has become a worldwide pandemic. Multiple efforts have been made to limit the transmission of this virus. A possible course of action is to lock down the territory. Unfortunately, this strategy wrecked the economy, worsening the terrible situation. The world health organization (WHO) would breathe a sigh of relief if there were to be no new cases. However, the government should explore employing data from the future in addition to the data it already has. Prediction of time series may be utilized for this purpose. This study indicated that the Gaussian processes method outperformed the least median squared linear regression method (LMSLR). Applying a Pearson VII-based global kernel produces MAE and RMSE values of 23.12 and 53.43, respectively.